5 INTRODUCTION Disaster risk is not only associated with the occurrence of intense physical phenomena but also with the vulnerability conditions that favour or facilitate disasters when such phenomena occur. Vulnerability is intimately related to social processes in disaster-prone areas, and is usually related to the fragility, susceptibility, or lack of resilience in the population when faced with different hazards. In other words, disasters are socioenvironmental by nature, and their materialization is the result of the social construction of risk. Therefore, their reduction must be part of decision-making processes. This is the case not only with post-disaster reconstruction, but also with public policy formulation and development planning. Due to this, institutional development must be strengthened and investment in vulnerability reduction stimulated in order to contribute to the sustainable development process in different countries. In order to improve disaster risk understanding and disaster risk management performance, a transparent, representative, and robust System of Indicators, easily understood by public policymakers, relatively easy to update periodically, and which allow cluster and comparison between countries was developed by the Institute of Environmental Studies (IDEA in Spanish) of the National University of Colombia, Manizales. This System of Indicators was designed between 2003 and 2005 with the support of the Operation ATN/JF-7906/07-RG Information and Indicators Program for Disaster Risk Management of the Inter-American Development Bank (IDB). This System of Indicators has three specific objectives: i) improvement in the use and presentation of information on risk. This assists policymakers in identifying investment priorities to reduce risk (such as prevention and mitigation measures), and directs the post-disaster recovery process; ii) to provide a way to measure key elements of vulnerability for countries facing natural phenomena. It also provides a way to identify national risk management capacities, as well as comparative data for evaluating the effects of policies and investments on risk management; and iii) application of this methodology should promote the exchange of technical information for public policy formulation and risk management programmes throughout the region. The System of Indicators was developed to be useful not only for the countries but also for the Bank, facilitating both the individual monitoring of each country and the comparison between the countries of the region. The first phase of the Program of Indicators IDB-IDEA involved the methodological development, the formulation of the indicators, and the evaluation of twelve countries from 1985 to Subsequently, two additional countries were evaluated with the support of the IDB s Regional Policy Dialogue on Natural Disasters. In 2008, a methodological review and the updating of the indicators for twelve countries were conducted in the framework of the Operation RG-T1579/ATN/MD RG. Indicators were updated to 2005, or for the most recent date according to the available information (2007 or 2008) for Argentina, Bolivia, Chile, Colombia, Costa Rica, Dominican Republic, Ecuador, Jamaica, 1

6 Mexico, Peru, and Trinidad and Tobago 1. In addition, Barbados and Panama were included in the programme. Subsequently, in the framework of other operations of the IDB, other evaluations of the System of Indicators have been made for Belize, El Salvador, Guatemala, Guyana, Honduras, and Nicaragua. This report has been made using the methodologies formulated in the Program of Indicators IDB-IDEA, 2 with some adjustments which are referenced in the description of each indicator. The System of Indicators mentioned above attempts to facilitate access by national decisionmakers to relevant information on a country s vulnerability and risk, through the use of relative indicators to help the identification and proposal of effective disaster risk management policies and actions. The underlying models attempt to represent risk and risk management schemes at a national scale, allowing the identification of their essential economic and social characteristics, and a comparison of these aspects and the risk context in different countries. The proposed System of Indicators allows disaster risk and risk management evaluation and benchmarking of each country in different time periods. It assists in advancing a more analytically rigorous and data-driven approach to risk management decision-making. This measurement approach enables: Representation of disaster risk at the national level, allowing for the identification of key issues relating to their characterization from an economic and social point of view. Risk management performance benchmarking of different countries to determine performance targets for improving management effectiveness. Due to a lack of parameters, the need to suggest some qualitative indicators measured on subjective scales is unavoidable. This is the case with risk management indicators. The weighting of some indices has been undertaken using expert opinion at the national level. Analysis has been achieved using numerical techniques that are consistent from the theoretical and statistical perspectives. Four components or composite indicators reflect the principal elements that represent vulnerability and show the advance of different countries in risk management. This is achieved in the following way: 1. The Disaster Deficit Index, DDI, measures country risk from a macro-economic and financial perspective when faced with possible catastrophic events. This requires an estimation of critical impacts during a given exposure time, and of the capacity of the country to face up to this situation financially. 1 Usually, the most recent values in the different databases are not definitive since they are subject to change, thus, the last considered year (which is different for each indicator) is in some cases tentative or preliminary. 2 More information and details of methodologies can be found in Cardona (2005). System of Indicators of Disaster Risk and Risk Management: Main Technical Report. Program of Indicators for Disaster Risk and Risk Management IDB IDEA, Universidad Nacional de Colombia, Manizales. 2

7 2. The Local Disaster Index, LDI, identifies the social and environmental risks that derive from more recurrent lower level events, which are often chronic at the local and subnational levels. These events particularly affect the more socially and economically fragile population and generate a highly damaging impact on the country s development. 3. The Prevalent Vulnerability Index, PVI, is made up of a series of indicators that characterize prevailing vulnerability conditions reflected in exposure in prone areas, socioeconomic fragility, and lack of resilience in general. 4. The Risk Management Index, RMI, brings together a group of indicators related to the risk management performance of the country. These reflect the organizational, development, capacity and institutional action taken to reduce vulnerability and losses, to prepare for crisis, and to efficiently recover. In this way, the System of Indicators covers different aspects of the risk and takes into account aspects such as: potential damage and loss due to the probability of extreme events; recurrent disasters or losses; socio-environmental conditions that facilitate disasters; capacity for macroeconomic recovery; behaviour of key services; institutional capacity and the effectiveness of basic risk management instruments such as risk identification, prevention and mitigation measures, financial mechanisms and risk transfer; emergency response levels; and preparedness and recovery capacity (Cardona 2008). Each index has a number of variables that are associated with it and are empirically measured. The choice of variables was driven by a consideration of a number of factors including: country coverage, the soundness of the data, direct relevance to the phenomenon that the indicators are intended to measure, and quality. Wherever possible, direct measurement of the phenomena that are being captured are sought; however, in some cases proxies 3 have to be employed. In general, variables with extensive country coverage are sought, but in some cases the use of variables with narrower coverage are necessary in order to measure critical aspects of risk that would otherwise be overlooked. This report presents the results for Guyana; methodological explanations will not be found because these were not within the scope of this report. Detailed information relating to the methodology of the System of Indicators can be found at: where details on conceptual framework, methodological support, data treatment and statistical techniques used in the modelling are presented (Cardona et al 2003a/b; 2004 a/b). 3 Due to the lack of detailed information for coarse grain results, alternative values of related data are used to reflect, indirectly, the desired information. 3

8 SYSTEM OF INDICATORS FOR GUYANA 1 NATIONAL CONTEXT Guyana is a sovereign state on the northern coast of South America, with an area of 214,970 km 2. It is the third-smallest (independent) state on the mainland of South America. It is bordered to the east by Suriname, to the south by Brazil, to the west by Venezuela, and to the north by the Atlantic Ocean. Guyana is subject to Atlantic swells on a year-round basis, heavy seasonal rainfall, and high humidity. The country is divided into ten regions, from an administrative rather than geographical perspective, each having varying levels of population and development (Figure 1). The most populous of these is Region 4 (310,320 people), which includes the capital, while the least populated is Region 8 (with 10,095 people). The most recent census data of 2002 estimates the population of Guyana at 751,223. Close to 90% of the country s population live within a relatively narrow strip of land (approximately 25 km wide), which though it only comprises 5% of the land area, is the administrative, agricultural, commercial and industrial centre of the country. Figure 1 presents an estimate of population for the different regions, and their variation since Region 10 Region 9 Region 8 Region 7 Region 6 Region 5 Region 4 Region 3 Region 2 Region Population x Figure 1. Population by regions (Source: Bureau of Statistics, Guyana 4 ) 4 4

9 Regarding its economy, the GDP of Guyana was US$1.6 billion in 2008; its growth rate was 5.4% and 3% in 2007 and 2008 respectively. In this period, current account and trade balance was in a deficit near to 12% and 15% of GDP respectively. The inflation rate was over 8% in 2008 but decreased to 4.4 in 2010, and the unemployment rate was 11.7% (2002). The gross capital formation as proportion of GDP rose since 2000 and was closer to 40% in The exchange rate in 2010 was 202 Guyanese Dollars (GYD) per United States dollar. Table 1 presents a summary of the macroeconomic variables of the country. With regard to the social characteristics, the illiteracy rate of the population over 15 years old was around 8.2% in The number of hospital beds per one thousand inhabitants was 2 in Table 1. Main macroeconomic and social indicators Indicator GDP (USD million) ** , Trade balance (% GDP) Total debt service (% Exports and income) ** Unemployment (%) ** 11.7 ** Human Development Index * Sources: The World Bank, ECLAC * Data of 2010 ** No data available 2 NATURAL HAZARDS Figure 2 presents the classification by mortality risk established by the International Strategy for Disaster Reduction, ISDR. These figures illustrate the events that can be considered as triggers for the estimation of the Disaster Deficit Index, IDD. Other frequent and isolated phenomena such as landslides and floods, that are less visible at the national level, are causes of recurrent effects at the local level, and may have an important accumulative impact. These kinds of phenomena are considered for the estimation of the Local Disaster Index. Appendix I presents a general description of the country s hazards. The most significant natural hazards for the country are floods which would cause the major losses in the future in Guyana. There are other natural phenomena that have a lower probability of affecting the country, such as hail storms, storm surges, and lightning. However, these hazard events are able to result in significant local damage. This information is especially important for the estimation of the Disaster Deficit Index, DDI. On the other hand, most recurrent and isolated phenomena such as landslides causes frequent effects at the local level that are not easily noticed at national level. These events also have also great impacts on population, and, if they are accumulative, can be important too. 5

10 Landslides (relative) Floods (relative) Earthquakes (relative) Cyclones (relative) Multiple mortality (relative) Landslides (absolute) Floods (absolute) Earthquakes (absolute) Cyclones (absolute) Multiple mortality (absolute) Unknown Very Low Low Medium Low Medium Medium High High Very High Important Extreme Figure 2. Classification by mortality risk (Source ISDR 2009) The mortality risk index established by the International Strategy for Disaster Reduction - ISDR, is based on hazard modelling (tropical cyclones, flooding, earthquakes and landslides), taking into account the frequency and severity of the hazard events, the human exposure, and the vulnerability identification. The absolute mortality risk index refers to the average of deaths per year; the relative mortality risk index refers to the average of deaths in proportion to the national population. Low indices of 1 mean low mortality risk with 10 as the maximum value meaning high mortality risk. According to Figure 2, relative values indicate that mortality risk is concentrated at medium-high due to floods, while landslides are at a medium-low level. Likewise, the absolute mortality risk shows that floods are classified as medium-low and landslides as very low concentrated. 3 INDICATORS OF DISASTER RISK AND RISK MANAGEMENT A summary of the results obtained from the System of Indicators application for Guyana for the period and for the last available year in the databases is presented in this section. These results are useful in order to analyze risk and risk management performance in the country, based on information supplied by different national institutions. 3.1 DISASTER DEFICIT INDEX (DDI) The DDI measures the economic loss that a particular country could suffer when a catastrophic event takes place, and the implications in terms of the resources that would be needed to address the situation. This index captures the relationship between the demand for contingent resources to cover the losses caused by the Maximum Considered Event (MCE) that the public sector must assume as result of its fiscal responsibility, and this sector s economic resilience (ER). Losses caused by the MCE are calculated with a model that takes into account, on the one hand, different natural hazards, - calculated in probabilistic terms according to historical registers of intensities of the phenomena - and, on the other hand, the current physical vulnerability that present the exposed elements to those phenomena. The ER is obtained from 6

11 the estimation of the possible internal or external funds that government, as the entity responsible for recovery or as owner of the affected goods, may access or has available at the time of the evaluation. A DDI greater than 1.0 reflects the country s inability to cope with extreme disasters, even by taking as much debt as possible. The greater the DDI, the greater the gap. An estimation of a complementary indicator, DDI CE is therefore made, to illustrate the portion of a country s annual Capital Expenditure that corresponds to the expected annual loss or the pure risk premium; i.e. what percentage of the annual investment budget would be needed to pay for future disasters (IDEA 2005; Cardona 2005). The DDI IS is also estimated with respect to the amount of sustainable resources due to intertemporal surplus; i.e. the saving which the government can employ, calculated over a ten-year period, in order to best attend to the impacts of disasters. The DDI IS is the percentage of a country s potential savings at present values that corresponds to the pure risk premium Reference parameters for the model Even though there is no detailed data useful for modelling public and private sector inventories, it is possible to use general information about built areas and/or the population to make estimations of these inventories of exposed elements. This technique or proxy method allows a coarse grain assessment of the volume and cost of the exposed elements required for the analysis. The parameters for shaping a homogeneous and consistent information structure for the specific objectives of the project are shown in Figures 3 and 4: (i) cost of square metre of some construction classes, (ii) built area in each city related to the number of inhabitants and (iii) distribution of built areas in basic groups for analysis, such as the public and private components, which would be under the charge of or would be fiscal liabilities of the government in case of disaster. In addition, the rest of private goods, that constitute capital stocks, are considered as well in order to provide a general view of the potential impact in the country. Figure 3 shows estimations of built areas in different components and its variations in time (from 2000 to 2010). Figure 4 presents a similar graphic related to the exposed values of the whole country. The techniques used for a country s exposure estimation, vulnerability and hazard assessment and risk models are explained in Ordaz & Yamin (2004) and Velasquez (2009). These technical explanations are available at 7

12 Area (km 2 ) Total Area Public Area Low income Area Figure 3. Total built areas by component in square km Exposed value (USD billions) Total value Public value Low income value Figure 4. Exposed value by component in billion dollars ($US) The values of the built areas include (i) total value (public and private built areas), (ii) public value (the buildings of the government and public infrastructure) and (iii) low income value (buildings of the low-income socio-economic homeowners). The properties mentioned above usually are the sovereign or fiscal liabilities. 3.2 Estimation of the indicators Table 2 shows DDI for 2000, 2005, and 2010 for the Maximum Considered Event (MCE) of 50, 100 and 500 years of return period. 5 In addition, DDI for 2010 for the direct Probable Maximum Losses is included (from the Flood Risk Assessment Report; dambreak case study). Table 2. DDI for different return periods DDI (FRA) DDI DDI DDI Events that can occur at any moment and which have a probability of occurrence of 2%, 10% and 18% in 10 years. 8

13 For extreme events with return periods of 500, 100 and 50 years in all periods the DDI is greater than 1.0; this means the country does not have enough resources to cover losses and/or feasible financial capacity to face losses and replace the capital stock affected. Table 3 shows DDI values, which corresponds to annual expected loss related to capital expenditure (annual investment budget), and related to possible savings for intertemporal surplus to 10 years, expressed in percentages. DDI CE illustrates that if contingent liabilities to the country were covered by insurance (annual pure premium), the country would have to invest annually 3.7% of 2010 s capital expenditure to cover future disasters. The DDI IS, with respect to the amount of sustainable resources due to intertemporal surplus, indicates that for all the periods evaluated savings were negative; that is, annual pure premium value would increase the deficit. Table 3. DDI related to capital expenditure and intertemporal surplus DDI' (FRA) DDI CE 7.9% 7.2% 3.7% 2.9% DDI IS ^D ^D ^D ^D ^D: negative values of intertemporal surplus or lower intertemporal surplus values than the expected annual loss, therefore deficit increasing Figure 5 illustrates DDI and DDI values related to capital expenditure. Graphics illustrate that for the 500, 100 and 50-year return period from 2000 to 2010 the DDI and the DDI CE decreased, although it still remains over GUYANA, DDI GUYANA, DDI GUYANA, DDI % % 8% 6% % 2% 0% Figure 5. DDI 50, DDI 100, DDI 500, DDI CE GUYANA, DDI' CE 7.2% 3.7% Table 4 shows the values of the potential losses for the country for the Maximum Considered Event, MCE, with 50, 100 and 500-year return periods. This estimation took into account in retrospective the exposure level of the country for 2000, 2005, and In 9

14 addition, Table 4 presents the values of the pure premium or the required annual amount to cover possible future disasters in each period. The DDI and DDI for the three years of analysis were calculated based on the estimates of the potential maximum losses and expected annual losses respectively (i.e. the numerator of the indicators). The value of losses, obtained for 2010 from the Flood Risk Assessment (FRA) report, is lower because these are direct physical losses (see the figures of the dam-break case study). These indicators can be estimated every five years and they can be useful in identifying the reduction or increase of the potential deficit due to disasters. Clearly, values of DDI can be more favourable in the future if actions such as investments in mitigation (retrofitting of vulnerable structures), which can reduce potential losses, and a wider insurance coverage of exposed elements, which can enhance economic resilience, are carried out. Table 4. Probable loss and pure premium for DDI and DDI calculations L (FRA) Total Million US$ Government Million US$ Total - % GDP 27.36% 25.46% 11.83% 8.87% Government - % GDP 13.68% 12.73% 5.92% 4.43% L100 Total Million US$ Government Million US$ Total - % GDP 41.04% 38.19% 17.75% 10.32% Government - % GDP 20.52% 19.09% 8.88% 5.16% L500 Total Million US$ Government Million US$ Total - % GDP 54.72% 50.92% 23.67% 13.15% Government - % GDP 27.36% 25.46% 11.83% 6.58% Ly Total Million US$ Government Million US$ Total - % GDP 2.08% 1.94% 0.90% 0.68% Government - % GDP 1.04% 0.97% 0.45% 0.33% Table 5 presents possible internal and external funds that the government needs to access at the time of the evaluation to face the losses in case of an extreme disaster. The sum of these available or usable possible funds corresponds to the economic resilience between 2000 and 2010, for every five years. Based on these estimates (i.e. the denominator of the indicator) the DDI was calculated for the different periods. 10

15 Table 5. Economic resilience, funds and resources for DDI calculations Funds Insurance premiums - % GDP Insurance/ reinsurance.50 -F1p Insurance/ reinsurance.100 -F1p Insurance/ reinsurance.500 -F1p Disaster reserves -F2p Aid/donations.50 -F3p Aid/donations.100 -F3p Aid/donations.500 -F3p New taxes -F4p Capital expenditure - % GDP Budgetary reallocations. -F5p External credit. -F6p Internal credit -F7p Intertemp surplus. d*- % GDP Intertemp surplus. -F8p $ 2 RE.50 Total - Million US$ Total - %GDP 9.28% 9.29% 7.84% RE.100 Total - Million US$ Total - %GDP 9.96% 9.93% 8.14% RE.500 Total - Million US$ Total - %GDP 10.64% 10.56% 8.43% DDI for 2010 was calculated based on the most recent available information on exposed elements. According to the available statistical information and the estimations of the consultant group, built areas and their physical values were established. Regarding economic resilience (denominator of the index), this was estimated in terms of GDP for each fund, taking as reference the economic information that was available. Reduction in DDI values in 2005 and 2010 demonstrates that the country has improved its economic resilience. Nevertheless, given that most of the resources to which the government could have access are its own funds and new debt, and, additionally, that government retains the majority of the losses and its financing represents high opportunitycost, given other needs of investment and the country s other existing budget restrictions, disasters would imply an obligation or non-explicit contingent liability that could have an impact on fiscal sustainability. 11

16 3.3 LOCAL DISASTER INDEX (LDI) The LDI captures simultaneously the incidence and uniformity of the distribution of local disaster effects; i.e. it accounts for the relative weight and persistence of the disaster effects at regional scale. The total LDI is obtained by the sum of three LDIs that are calculated based on the information available in the DesInventar database, 6 regarding deaths, affected people, and economic losses in each region of the country. If the relative value of the index is high, the uniformity of the magnitude and the distribution of the effects of various hazards among regions is greater. A low LDI value means low spatial distribution of the effects among the regions where the events have occurred. The scale used for each LDI is from 0 to 100 and the total LDI is the sum of the three components. A low LDI value (0-20) means high concentration of small disasters in few regions and a low spatial distribution of their effects between the regions where they had taken place. Medium LDI values (20-50) means small disaster concentration and distribution of their effects are intermediate; high LDI values (greater than 50) indicate that the majority of regions suffer small disasters and their effects are similar in all affected regions. High values reflect that vulnerability and hazards are more wide-spread across the territory. Original methodological formulation of the LDI (IDEA 2005) encompassed the effects of all the events (both small and big) occurring in the country; i.e. effects both of small and frequent events and extreme and rare events. However, during the first evaluation made in 2005, it was realized that reflecting the influence of extreme events was not the objective of this indicator. Therefore all further evaluations would take into account only the small and moderate events, as is the case for the Guyana evaluation here. Thus, this updating of the methodology excluded extreme events from the database through statistical identification of outliers (Marulanda and Cardona 2006). The LDI that measures the concentration of aggregate losses at regional level has been formulated in a complementary way. Its value is between 0.0 and 1.0. A high LDI value means that a high economic-losses concentration due to small disasters has occurred, but in few regions. For example, an LDI equal to 0.43 and 0.79 means that approximately 10% of regions of the country will have a concentration of approximately 35% and 70% of the losses respectively. Table 6 shows LDI for deaths, affected people, and losses, as well as total LDI and LDI for all the events that took place in the country in the periods , , , , , and Details of these abovementioned technical issues are available in the Main Technical Report of the System of Indicators (IDEA 2005). Table 6. LDI values LDI K LDI A LDI L LDI LDI' The DesInventar database was developed in 1994 by the Network for Social Studies in Disaster Prevention in Latin America. 12

17 100 LDI (K) GUYANA 100 LDI (A) GUYANA LDI (L) GUYANA 1.00 LDI' GUYANA Figure 6. LDI for deaths (K), affected people (A) and losses (L), and LDI Figure 6 illustrates LDI values, according to the type of effects in different periods. The LDI for deaths between the period and indicates that low-scale disasters caused deaths in a more regular way in the territory. During the other periods it shows that no deaths occurred due to small or moderate disasters. Regarding the LDI for affected persons, the periods , , and showed a more regular and uniform effect across the territory, while for the other periods effects were more concentrated in only some regions of the country. In the case of the LDI of economic losses the only period that presented a more uniform behaviour across regions was the period The economic losses in the other periods were more concentrated in only a few regions of the country. The results of the LDI show medium-high values which mean the concentration of the economic losses are not very well distributed within the country. 13

18 250 LDI GUYANA 250 LDI GUYANA LDI(L) LDI(A) LDI(K) Figure 7. Total LDI and aggregated presentation In general, as the LDI illustrates in Figure 7, low-scale disasters caused more regular and distributed effects between all regions of the country at the beginning of the 1990s and beginning of 2000 than in the 1980s, and especially in the period At the end of the 1990s this regularity decreased, i.e. effects became more concentrated. Table 7 shows the numbers of total deaths, total affected persons and total economic losses in US dollars for the four periods evaluated. Table 7. Total of deaths, affected persons and losses Total deaths Total affected persons ,492 6,063 5, Total losses (USD) 1,067, ,987 79, , ,232 67,331 Figure 8 shows these values to illustrate changes from one period to another. Deaths were less in 1990s as compared to the period whereas the economic losses were very high in the period, and high for the period The numbers of affected persons were high for 1990s and for the period Taking into account the results of the LDI L and the LDI for this period, it can be seen that the economic losses were very concentrated, either spatially or by type of event. 14

19 DEATHS AFFECTED PEOPLE 6,063 5,777 2, ECONOMIC LOSSES (x USD) Figure 8. Total deaths, affected people and losses It should be taken into account that the LDI has been built based on the effects presented in different types of events. Nonetheless, it is important to indicate that the LDI is a measure that combines persistence, incidence, and regularity of events on a territorial level. This is the reason why in order to determine the index, values have been normalized using the area of the regions. These indices are useful for economic analysts and sectoral officials, related to the promotion of rural and urban policy development, because they can detect the persistency and accumulation of effects of local disasters. They can stimulate the consideration of risk problems in territorial planning at the local level and intervention, as well as the protection of hydrologic basins, and they can justify resource transfers to the local level with the specific goals of risk management and the creation of social security nets. 15

20 3.4 PREVALENT VULNERABILITY INDEX (PVI) PVI characterizes predominating vulnerability conditions reflected in exposure in prone areas, socio-economic fragility, and lack of social resilience; aspects which favour both direct impact and indirect and intangible impact in case of the occurrence of a hazard event. This index is a composite indicator that depicts, comparatively, a situation or pattern in a country, and its causes or factors. This is so to the extent that the vulnerability conditions that underlie the notion of risk are, on the one hand, problems caused by inadequate economic growth and, on the other hand, deficiencies that may be intercepted via adequate development processes. The PVI reflects (i) susceptibility due to the level of physical exposure of goods and people, (the PVI ES ) that favours direct impact in case of hazard events); (ii) social and economic conditions that favour indirect and intangible impact, (the PVI SF ); and (iii) lack of capacity to anticipate, to absorb consequences, to efficiently respond, and to recover, (the PVI LR ) (IDEA 2005; Cardona 2005). The PVI ranges between 0 and 100. A value of 80 means very high vulnerability, from 40 to 80 means high, from 20 to 40 is a medium value, and less than 20 means low Indicators of exposure and susceptibility In the case of exposure and/or physical susceptibility, the PVI ES, the indicators that best represent this function, are those that represent the susceptible population, assets, investment, production, livelihoods, essential patrimony, and human activities. Other indicators of this type may be found in population, agricultural and urban growth, and densification rates. These indicators are detailed below: ES1. Population growth, avg. annual rate, % ES2. Urban growth, avg. annual rate, % ES3. Population density, people (5 km 2 ) ES4. Poverty-population below US$1 per day PPP ES5. Capital stock, million US$ dollar/1000 km 2 ES6. Imports and exports of goods and services, % GDP ES7. Gross domestic fixed investment, % of GDP ES8. Arable land and permanent crops, % land area. These indicators are variables that reflect a notion of susceptibility when faced with dangerous events, whatever the nature or severity of these. To be exposed and susceptible is a necessary condition for the existence of risk. Despite the fact that in any strict sense it would be necessary to establish if the exposure is relevant when faced with each feasible type of event, it is also possible to assert that certain variables comprise a comparatively adverse situation where it is posited that natural hazards exist as a permanent external factor, even without precisely establishing their characteristics Indicators of socio-economic fragility Socio-economic fragility, PVI SF, may be represented by indicators such as poverty, human insecurity, dependency, illiteracy, social disparities, unemployment, inflation, debt, and 16

FOREWORD Disaster risk is not only associated with the occurrence of intense physical phenomenon but also with the vulnerability conditions that favour disasters when such phenomena occur. Vulnerability

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